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A Novel Bank Check Signature Verification Model using Concentric Circle Masking Features and its Performance Analysis over Various Neural Network Training Functions

机译:具有同心圆掩蔽特征的新型银行支票签名验证模型及其在各种神经网络训练函数上的性能分析

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Background: Handwritten signature is a person's unique identity. Signature verification is an economical biometric method with online and offline schemes. This paper deals with the offline verification of signatures found in bank checks. Method: Extracting feature is the most vital part of a signature verification process. An efficient feature extraction method, Concentric Circles Masking Method, is used to extract robust, scale invariant and rotation invariant features. The extracted feature values are normalized and fed to a feedforward back propagation neural network for classification of the signatures into genuine or forged ones. The feature's performance is measured with various training functions of the neural network. The system modeled is tested with the well-known CEDAR database. Findings: Experimental Analysis shows that the features extracted by this method prove to be efficient. The scanned signature is covered by concentric circles and the pixel distribution ratio in each circle is calculated and used for verification purpose. Since a circle is used, the extracted features are scale and rotation invariant which makes the feature robust. The neural network's training, validation and testing ratio are varied and the performance of various training functions is studied. It is inferred that conjugate gradient back propagation with Fletcher-Reeves updates (traincgf) training function has the maximum average accuracy of 97.89% for the CCMM features.
机译:背景:手写签名是一个人的唯一身份。签名验证是一种具有在线和离线方案的经济生物特征识别方法。本文涉及银行支票中签名的脱机验证。方法:提取特征是签名验证过程中最重要的部分。一种有效的特征提取方法,“同心圆蒙版法”(Concentric Circles Masking Method)用于提取鲁棒的,比例不变的和旋转不变的特征。将提取的特征值标准化并馈入前馈反向传播神经网络,以将签名分类为真实或伪造。通过神经网络的各种训练功能来衡量特征的性能。使用著名的CEDAR数据库测试了建模的系统。结果:实验分析表明,该方法提取的特征是有效的。扫描的签名被同心圆覆盖,并且计算每个圆中的像素分布比率并将其用于验证目的。由于使用了一个圆,因此提取的特征是比例尺和旋转不变的,这使该功能更强大。神经网络的训练,验证和测试比率各不相同,并且研究了各种训练功能的性能。可以推断,具有Fletcher-Reeves更新(traincgf)训练功能的共轭梯度反向传播对于CCMM功能具有97.89%的最大平均准确度。

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